Title :
Stochastic nonlinear model predictive control with probabilistic constraints
Author :
Mesbah, Ali ; Streif, Stefan ; Findeisen, Rolf ; Braatz, Richard
Author_Institution :
Massachusetts Inst. of Technol., Cambridge, MA, USA
Abstract :
Stochastic uncertainties are ubiquitous in complex dynamical systems and can lead to undesired variability of system outputs and, therefore, a notable degradation of closed-loop performance. This paper investigates model predictive control of nonlinear dynamical systems subject to probabilistic parametric uncertainties. A nonlinear model predictive control framework is presented for control of the probability distribution of system states while ensuring the satisfaction of constraints with some desired probability levels. To obtain a computationally tractable formulation for real control applications, polynomial chaos expansions are utilized to propagate the probabilistic parametric uncertainties through the system model. The paper considers individual probabilistic constraints, which are converted explicitly into convex second-order cone constraints for a general class of probability distributions. An algorithm is presented for receding horizon implementation of the finite-horizon stochastic optimal control problem. The capability of the stochastic model predictive control approach in terms of shaping the probability distribution of system states and fulfilling state constraints in a stochastic setting is demonstrated for optimal control of polymorphic transformation in batch crystallization.
Keywords :
chaos; constraint satisfaction problems; nonlinear control systems; nonlinear dynamical systems; optimal control; polynomials; predictive control; statistical distributions; stochastic systems; uncertain systems; batch crystallization; computationally tractable formulation; constraints satisfaction; convex second-order cone constraints; finite-horizon stochastic optimal control problem; nonlinear dynamical systems; polymorphic transformation; polynomial chaos expansions; probabilistic constraints; probabilistic parametric uncertainties; probability distribution; probability levels; real control applications; receding horizon implementation; state constraints; stochastic model predictive control approach; stochastic nonlinear model predictive control; stochastic setting; system model; system states; Crystals; Optimal control; Polynomials; Predictive control; Probabilistic logic; Stochastic processes; Uncertainty; Nonlinear systems; Optimal control; Uncertain systems;
Conference_Titel :
American Control Conference (ACC), 2014
Conference_Location :
Portland, OR
Print_ISBN :
978-1-4799-3272-6
DOI :
10.1109/ACC.2014.6858851